UniMaia: Steering Chess Policies with Language for Human-like Play 文章

ArXiv CS.CL2026-05-28NEWSen作者: Sherman Siu (University of Waterloo), Lesley Istead (University of Waterloo)

摘要

arXiv:2605.27767v1 Announce Type: new Abstract: Recent advances in large language models have enabled natural language to serve as a flexible interface for controlling complex systems, but often at the cost of large-scale multimodal training or weakened domain-specific inductive biases. In structured decision-making domains such as chess, specialized policy networks achieve strong performance but lack semantic controllability, while prompt-conditioned language models are more flexible yet typically exhibit weaker domain grounding. We propose $\textbf{UniMaia}$, a framework for prompt-conditioned policy modulation that adapts a frozen Lc0-based chess policy network using a parameter-efficient text encoder and a ControlNet-style conditioning mechanism. UniMaia enables semantic control over gameplay, including opening selection and player strength, while preserving the pretrained policy representations.

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